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Analyzing Building-Height Restrictions: Predicted Impacts, Welfare Costs,and a Case Study of Bangalore, India
by
Alain BertaudConsultant, World Bank
166 Forest Rock RoadGlen Rock, NJ 07452
e-mail: [email protected]
and
Jan K. BruecknerDepartment of Economics
andInstitute of Government and Public A®airsUniversity of Illinois at Urbana-Champaign
Champaign, IL 61820e-mail: [email protected]
April 2003
Abstract
This paper analyzes the impacts and the welfare cost of building-height restrictions, providinga concrete welfare-cost estimate for the city of Bangalore. Relying on several theoreticalresults, the analysis shows that the welfare cost imposed on its residents by Bangalore's FARrestriction ranges between 3 and 6 percent of household consumption. This burden represents asigni¯cant share of individual resources, and its presence may push many marginal householdsinto poverty.
Analyzing Building-Height Restrictions: Predicted Impacts, Welfare Costs,and a Case Study of Bangalore, India
by
Alain Bertaud and Jan K. Brueckner*
1. Introduction
Throughout the world, land-use decisions are a®ected by various forms of government in-
tervention in real estate markets. Such interventions include U.S.-style zoning regulations,
which are meant to minimize externalities by separating di®erent types of land uses, as well as
greenbelt laws and urban growth boundaries, which limit the spatial expansion of cities (see
Fischel (1990) for an overview of such policies). Sometimes, government intervention takes
more drastic forms. For example, apartheid policies in South Africa dictated residential loca-
tion patterns by race, pushing black households to remote locations far from the urban centers
(see Brueckner (1996)). In the command economies of the old Soviet bloc, rigid government
control sometimes generated perverse land-use patterns, exempli¯ed by Moscow's inverted
density contour, which put people far from their places of work (see Bertaud and Renaud
(1997)).
Governments in most market economies also exert explicit control over the density of de-
velopment. While minimum-lot-size rules and other regulations are designed to limit suburban
development densities in the U.S., a related regulatory tool is the building-height restriction,
which governs land-use in the central parts of many cities worldwide. The most obvious exam-
ples are Washington, D.C., where no building can be taller than the U.S. Capitol, and Paris,
where height restrictions attempt to preserve the character of the central city.
Although the use of height restrictions in both of these cities is driven by aesthetic consid-
erations, building-height restrictions may also be imposed in an attempt to achieve other goals.
A case in point is India, where city governments impose height limitations through restrictions
on the \°oor area ratio" (FAR) of buildings. The FAR is computed by dividing a building's
total °oor area by the area of land parcel on which it sits, and an upper limit on this ratio
1
e®ectively puts a limit on the building's height.
In controlling FAR, the goal of the Indian planners has been to indirectly limit both job and
population densities. It is believed that \excessive" density results in a loss of environmental
quality and increased tra±c congestion. In addition, higher densities would place greater
demands on urban infrastructure, which Indian cities, plagued by weak technical capacities
and inadequate tax revenue, feel ill-equipped to provide at appropriate levels.
For example, while low water pressure and high leakage might be acceptable in a low-
density neighborhood, the same pressure and leakage performance might create unacceptable
living conditions in higher density areas. A similar point applies to waste disposal, where an
Indian municipality may succeed at removing only 25 percent of the refuse generated by the
city. While this outcome might be unpleasant but survivable in a low-density neighborhood,
it may entail grave health consequences at higher densities.
Thus, accepting high densities in central areas would have required a commitment by Indian
cities to improve the productivity and performance of municipal services, requiring substantial
investments in infrastructure. Faced with this trade-o® and limited by their poor technical
capacities, Indian municipalities chose to reduce densities via FAR restrictions in order to
avoid central-city infrastructure investments. In the last few years, however, the technical
performance of many major municipal governments has greatly improved, but the policy of
FAR restrictions has not been revised.
Motivated by the widespread use of FAR restrictions in India, the present paper analyzes
the e®ects of such restrictions and attempts to appraise their costs. This task is carried
out ¯rst on an abstract level, with the standard monocentric-city model used to show how
FAR restrictions a®ect land use. The analysis, presented in section 2, reaches the natural
conclusion that, by limiting population densities near the center, an FAR restriction causes
the city to expand spatially. This spatial enlargement a®ects consumers both by raising their
average commuting distance and by pushing up the housing prices they must pay. However,
the analysis shows that the resulting per capita welfare loss can be measured simply by the
increase in commuting cost for an individual living at the edge of the city, who is now more
distant from the central workplace.
2
It should be noted that this welfare-cost measure abstracts from the potential e®ects of the
FAR restriction on infrastructure costs. While the restriction may reduce costs in the center,
as explained above, spatial expansion of the city also leads to higher costs by requiring a wider
infrastructure network. Because the net change in costs is di±cult to estimate, the analysis
focuses purely on consumer losses from the FAR restriction, abstracting from infrastructure
issues.
Armed with results of the theoretical analysis, the paper turns in section 3 to a case
study of a particular Indian city, namely, Bangalore. Using detailed land-use data for this
city, the analysis carries out a counterfactual exercise, asking what Bangalore would look
like today had it developed in the absence of the FAR restriction. The theory shows how
FAR values and dwelling sizes would change throughout the city following a hypothetical
removal of the restriction, and these predicted changes can be used to spatially reallocate
Bangalore's population, raising central densities and generating a shrinkage in the city's spatial
size. The ¯nal step is to compute the resulting commuting-cost saving for an individual living
at Bangalore's now-closer edge. This saving captures the consumer welfare gain from removal
of the FAR restriction, and hence the welfare cost of its presence.
While such a counterfactual exercise is illuminating in its exposure of the costs of having
followed the current regulatory policy, it does not provide Indian policy makers with some of
the practical information they need. In deciding whether to ease the current FAR restrictions,
these policy makers need to know the future impacts of such a change, not its retrospective
e®ect. The conclusion of the paper discusses such future impacts, although the discussion is
necessarily speculative.
Before proceeding, it is important to acknowledge the earlier work of Arnott and MacK-
innon (1977), who carried out the only previous analysis of the e®ects of building-height re-
strictions, relying on a numerical version of the monocentric-city model. Their work is similar
in spirit to the analysis in section 2, although it is carried out using a much more detailed
and realistic speci¯cation of the housing production technology. Partly because of this greater
realism, Arnott and MacKinnon are unable to present any general theoretical results regarding
the impact of an FAR restriction, as is done below. The connections between Arnott and
3
MacKinnon's ¯ndings and those of the present analysis are noted as the discussion unfolds.
2. Theory
This section presents a theoretical analysis of the impact of building-height (FAR) restric-
tions. After starting with a review of the standard monocentric-city model, the discussion
shows how the urban equilibrium is a®ected by the presence of an FAR restriction. A numer-
ical simulation further illustrates the e®ects of the restriction, with the results summarized in
a series of graphs. The analysis concludes by discussing measurement of the consumer welfare
loss from the FAR restriction.
2.1. The monocentric-city model
The monocentric-city model was initially developed by Alonso (1964), Mills (1967), and
Muth (1969), and Wheaton (1974) provided a more general analysis of the model's properties.
The following discussion relies on Brueckner's (1987) extension of Wheaton's approach. Since
the model has been explained many times in the literature, the present treatment is compressed.
A more expansive review can be found in Brueckner (1987) and elsewhere.
The city is inhabited by N identical residents, all of whom work in the central business
district (CBD), earning income y per period. The inhabitants commute from their residences
to the CBD on a dense radial road network, paying t per round-trip mile per period. Letting
x denote radial distance, the disposable income of a consumer living x miles from the CBD is
then y ¡ tx.
Individuals have the common, well-behaved utility function v(c; q), which depends on con-
sumption of a numeraire nonhousing good, denoted c, and housing square footage, denoted
q. Everyone is a renter, and p denotes the rental price per square foot of °oor space. The
consumer budget constraint is then c + pq = y ¡ tx. Eliminating c via the budget constraint,
utility can be written v(y¡ tx ¡ pq; q).Consumers maximize this utility expression by choice of q taking p as given. To insure
locational equilibrium, this maximization must lead to a realized utility level that is uniform
across space. In other words, it must be true that maxqv(y ¡ tx ¡ pq; q) = u, where u is the
uniform utility level. This requirement yields two conditions, a ¯rst-order condition for choice
4
of q and the condition that utility equals u. Together, these conditions determine q and p as
functions of the parameters of interest, which in the present case are x and u. These solutions
are given by
q(x; u); p(x; u): (1)
Spatial variation in p, as seen in (1), ensures locational indi®erence for consumers. To
achieve this outcome, p must decline with x to o®set the higher commuting costs incurred
at greater distances. Thus, px < 0 holds, where the subscript denotes partial derivative. In
response to this price decline, dwelling size increases with x, so that qx > 0.
The utility level is ultimately endogenous, being determined by the equilibrium conditions
discussed below. However, a parametric increase in u a®ects both p and q. The housing
price falls as u rises, with pu < 0. The lower price allows the consumer to reach the higher
indi®erence curve with disposable income held constant. As long as housing is a normal good,
this movement must involve an increase in q, with qu > 0.
Housing °oor space is produced by combining land and capital (building materials) under a
constant-returns technology. Because of constant returns, housing output per unit of land can
be written h(S), where h is the intensive form of the production function and S is the capital-
to-land ratio, referred to as \structural density." Since h(S) gives housing °oor space per unit
of land, it e®ectively represents the °oor area ratio (FAR), as discussed in the introduction.
With the price of capital normalized to unity, pro¯t per acre for the housing developer
equals ph(S)¡ S ¡ r, where r is rent per unit of land. Given p, the developer chooses S to
maximize pro¯t, satisfying the ¯rst-order condition ph0(S) = 1. Land rent is then determined
by the zero-pro¯t condition, which can be written r = ph(S) ¡ S. Since S depends on p via
the ¯rst-order condition, it ultimately depends on the determinants of p, x and u. Moreover,
since r depends on p and S , it too depends on these same parameters. Thus, the solutions can
be written
S(x; u); r(x; u): (2)
Since px < 0 holds and since the lower p depresses the incentive to develop the land, Sx < 0
also holds, indicating that structural density declines with x. Similarly, land rent also declines
5
with x, so that rx < 0. Finally, with a higher u depressing p, both S and r fall as utility
rises, yielding Su; ru < 0. For future reference, the e®ects of x and u on all the variables are
summarized as follows:
qx > 0; px; Sx; rx < 0; qu > 0; pu; Su; ru < 0: (3)
The two urban equilibrium conditions determine the utility level u as well as the distance
x to the edge of the city. These equilibrium conditions require (i) that the urban land rent at
x equals the agricultural rent ra, and (ii) that the city population N ¯ts inside x. Letting the
equilibrium values of u and x be denoted u0 and x0, the conditions determining these values
can be written
r(x0; u0) = ra (4)Z x0
0µxh(S(x; u0))q(x;u0)
dx = N; (5)
where µ · 2¼ is the constant number of radians of land available for housing. To interpret
(5), observe that h(S(x; u0))=q(x; u0) equals housing °oor space per unit of land divided by
°oor space per dwelling. This ratio thus gives dwellings per unit of land, which in turn equals
population density if each dwelling contains one person.1 Multiplying this density by the area
of the ring at distance x, equal to µxdx, and integrating across rings out to x then gives the
population ¯tting in the city, which must equal N. In conjunction with (4), the resulting
condition helps determines the equilibrium values of u0 and x0.
It should be noted that the rent earned by the land, both urban and agricultural, disappears
from the model. This outcome re°ects the standard assumption that absentee landowners, who
live outside the city in question, receive the rental income. Models with resident landowners
do exist, but they are more cumbersome to analyze (see Pines and Sadka (1986)).
6
2.2. Introducing an FAR restriction
Under an FAR restriction, the government imposes an upper limit on the square footage of
housing that can be produced per unit of land. In the model, such a restriction can be written
h(S) · bh; (6)
where bh is the FAR limit. Since S declines with x in an unrestricted city, as seen above, it
follows that housing output per unit of land, h(S), declines with x as well. As a result, the
FAR restriction will bind in the central part of the city, where h(S) would normally be high,
being nonbinding farther from the center.
Let bx denote the value of x where the FAR restriction becomes binding. Then, letting u1
and x1 denote the u and x values for the FAR-restricted city, the equilibrium conditions are
given by
r(x1; u1) = ra (7)
h(S(bx;u1)) = bh (8)Z bx
0µx
bhq(x; u1)
dx +Z x0
bxµxh(S(x; u1))q(x; u1)
dx = N: (9)
To understand (8), note that the left-hand side gives the FAR value that would be freely chosen
by developers at x = bx, which is based on the chosen structural density S(bx;u1). Thus, (8)
says that the freely-chosen FAR at bx equals the restricted value bh, indicating that this location
is where the FAR restriction becomes binding. To interpret (9), note that the second integral
has the same form as (6) but a lower limit of bx instead of zero, and that the ¯rst integral
embodies the fact that h must equal bh inside of bx. By forcing h to remain constant instead of
rising as x falls over this range, the FAR restriction tends to reduce population density in the
central part of the city.
Note ¯nally that, since land rent follows the r(x;u1) function outside bx, (7) is the appro-
priate boundary condition involving ra. However, this land rent function is not relevant inside
7
bx since S is not freely chosen over this range. Instead, using the zero-pro¯t condition from
above, r is given by p(x; u1)bh ¡ bS inside bx, where bS is the structural density corresponding
to bh (satisfying h(bS) = bh). This alternate land-rent formula does not, however, enter the
equilibrium conditions (7){(9).
These three equations determine the equilibrium values u1, x1 and bx for the FAR-restricted
city. The key question concerns the comparison between these values and those for the un-
restricted city, focusing on the di®erences in u and x. Using the properties of the model
established above, it can be shown that the FAR restriction hurts the urban residents and
causes the city to spread out. In particular,
Proposition 1. The restricted city takes up more space and has lower consumerwelfare than the unrestricted city, with x1 > x0 and u1 < u0 holding.
To establish this conclusion, suppose ¯rst that u and x were the same in both cities, with
u1 = u0 ´ u¤ and x0 = x1 ´ x¤. Then, note that equality of u1 and u0 means that population
density (h=q) is the same between bx and x¤ in the restricted and unrestricted cities. However,
since bh < h(S(x;u¤)) holds for x < bx, it follows that the restricted city has lower density inside
bx than does the unrestricted city over this same range of distance. With the lower densities in
the center and the same density outside bx, it follows that the restricted city ¯ts fewer people
than the unrestricted city, which implies that it cannot accommodate the population N . A
similar argument rules out the case where u1 > u0 and x1 < x0, establishing the Proposition.2
2.3. A numerical simulation
To further illustrate di®erences between the restricted and unrestricted cities, it is helpful
to rely on a numerical simulation. The numerical example is based on U.S. parameter values,
which can be chosen with some degree of con¯dence. However, the results apply qualitatively
to any city, including the Bangalore case considered below.
The simulation is based on Cobb-Douglas forms for the utility and production functions.
The number of households N for the city is set at 800,000, implying an e®ective population
of over 2 million in the case where a household realistically contains 2.6 persons. Income per
household is set at the 2000 U.S. census value of $42,151. About two-thirds of the circular
8
area of the city is available for housing, with µ in (6) and (9) set equal to 4 (as opposed to 2¼)
radians. Other parameter values are discussed in the appendix.
The unrestricted city has an x0 value of 21.4 miles. In the city, h(S) ranges from a value of
around 17.5 at the CBD to 0.4 at x0. To interpret these values, note that FAR, as represented
by h(S), is roughly equal to the number of °oors in a building, in the case when the parcel
contains no open space around the structure. On the other hand, if a building covers only
half of a parcel's land area, then FAR is equal to roughly half of the number of °oors. In the
latter case, the above numbers suggest that buildings in the unrestricted city have more than
30 °oors at the center and are single-storied at the edge of the city. This FAR pattern is shown
in Figure 1.
For the restricted city, the upper bound on FAR is set at 3.75. Under this restriction, the
city radius expands by 2.1 miles, reaching an x1 value of 23.5 miles. The value of bx, where the
FAR restriction becomes binding, is 11.7 miles, about halfway to the edge of the city.
The resulting FAR pattern can be seen in Figure 1. While FAR is °at at 3.75 inside bx, note
that FAR values are higher outside bx than in the unrestricted city. Formally, the reason for
this outcome is that lower utility in the restricted city means that h(S(x; u1)) > h(S(x; u0))
holds over the x range where S is freely chosen (recall Su < 0).3
To understand this increase in FAR intuitively, note that by e®ectively tightening housing
supply, the FAR restriction raises the price per square foot of housing at each location, as seen
in Figure 2. Formally, this rise is a consequence of the decline in u combined with pu < 0,
which yield p(x;u1) > p(x; u0). With p higher everywhere in the restricted city, the incentive
for development grows, leading to an increase in FAR wherever the restriction is not binding.
The increase in p also leads to smaller dwellings in the restricted city, as seen in Figure
3. Once again, in response to the tightening of housing supply caused by the FAR restriction,
consumers cut back on their consumption of °oor space. It should be noted that, because the
units of measurement of housing consumption are arbitrary in the simulation, the values of q
and p can be rescaled appropriately. The scaling is chosen to give plausible values at the CBD
in the unrestricted city, with dwellings of about 500 square feet, renting at about $8 per square
foot per year.
9
Figure 4 shows the e®ect of the FAR restriction on land rent, with rent given as a value
per square mile. Near the center, rent is higher in the unrestricted city, but this relationship is
reversed beyond a distance of x = 4. To understand this pattern, note that the decline in utility
raises rent in the restricted city outside bx, with r(x; u1) > r(x;u0) holding given ru < 0. But
once x falls below bx, rent rises more slowly than in the unrestricted city, a consequence of the
¯xity of housing output and structural density (see the above rent formula). This phenomenon
can be seen in Figure 4, where the restricted land rent function becomes more nearly linear
around x = 12, mirroring the shape of the housing price curve in Figure 2. Because it increases
less rapidly as x falls, restricted rent is eventually overtaken by rent in the unrestricted city,
which rises above it.
Finally, Figure 5 shows the e®ect of the FAR restriction on population density (measured
per square mile). Strictly speaking, this Figure gives dwelling density (dwellings per square
mile), which equals population density only when household size is unity. Outside bx, the lower
u in the restricted city implies higher density (recall Su < 0 and qu > 0). But, as in the case
of land rent, the FAR restriction slows the increase in density once x falls below bx. Over this
range, the only force raising density is the decline in dwelling size q, with the e®ect of a higher
FAR ceasing to operate (this fact also accounts for the kink at bx). As a result, density in the
unrestricted city eventually overtakes the restricted density as x falls, rising above it inside
x = 8. Density at the CBD in the unrestricted city is about 15,000 dwellings per square mile,
while central density is only 4300 in the restricted city.
With the exception of the crossing pattern of the land rent curves in Figure 4, all of the
patterns in the Figures are completely general, being guaranteed to hold under any parame-
terization of the model. In the case of land rent, the pattern shown in Figure 4, where central
rent is higher in the unrestricted city, is not assured.
2.4. The welfare cost of the FAR restriction
As seen above, imposition of the FAR restriction reduces the utility level of urban residents.
It is helpful to compute a dollar measure of this welfare loss, and the subsequent analysis is
directed toward this end.
The analysis focuses on the individual living at the edge of the city, who resides farther
10
from the CBD after the FAR restriction is imposed. In comparing the circumstances of this
individual with and without the restriction, a crucial fact is useful: the edge resident pays
the same price per unit of housing p regardless of the location of x.4 Intuitively, the housing
price at the edge of the city depends on the prices of land and capital at this location, which
determine production cost. But these prices are independent of the actual value of x, being
equal to ra and 1, respectively.
Since the housing price paid by the edge resident stays the same as the FAR restriction
pushes x outward, it follows that the only e®ect felt by this individual is an increase in com-
muting cost, which rises by t(x1 ¡ x0). Thus, a compensatory payment of this amount would
be su±cient to o®set the harmful e®ect of the FAR restriction. In other words, if the edge
resident received a compensation of t(x1 ¡ x0), then his utility would remain at the original
level of u0 instead of falling to u1. Thus, t(x1 ¡ x0) represents the welfare cost of the FAR
restriction for the edge resident.
The impact of the FAR restriction for the city's interior residents is more complex than for
the edge resident, suggesting that the above welfare-cost measure may not be relevant. As seen
in Figures 2 and 3, housing prices rise following imposition of the FAR restriction, and dwelling
sizes fall in response. Consumption of the nonhousing good c also changes, and households
relocate, moving on average farther from the center. However, since everyone in the city must
be equally well-o® in equilibrium, these complexities can be ignored. In particular, it can be
shown that the welfare cost computed for the edge resident applies exactly to the city's interior
residents, even though their circumstances change in a more complex fashion. The following
result is relevant:
Proposition 2. For each urban resident, the welfare cost of the FAR restriction equalst(x1 ¡ x0), the increase in commuting cost for the edge resident.
A formal argument establishing this result is given in the appendix.
It should be noted that, while harming consumers, the FAR restriction also a®ects the
welfare of absentee landowners by altering total land rent. Arnott and MacKinnon's (1977)
simulations show that the FAR restriction raises total di®erential land rent (urban rent minus
11
ra), and the same outcome occurs in the simulation of section 2.3. However, since the direction
of the impact on absentee landlords cannot be established in general, the reverse outcome is
possible in principle.
3. Applying the Analysis to Bangalore
As explained in the introduction, Bangalore has developed under a long-standing FAR
restriction, which has limited building heights in the city center. This section attempts to
measure the consumer welfare cost of Bangalore's FAR restriction using the theoretical results
from section 2.
This exercise has two components. The ¯rst step is to predict what Bangalore would
look like today had it developed in the absence of the FAR restriction. In this counterfactual
exercise, particular interest lies in the reduction of Bangalore's spatial size, and the consequent
reduction in x. The second step is to use the implied x reduction along with a measure of
commuting cost per mile to ¯nd the commuting-cost savings for the edge resident. These
savings measure the welfare gain from the absence of the FAR restriction, and hence the
welfare cost of its presence. These two components are discussed sequentially in the next two
sections.
3.1. Computing the change in Bangalore's spatial size
Reversing the numerical exercise discussed in section 2, removal of the FAR restriction
generates three important impacts on land-use: FAR values rise at central locations, they fall
at locations where the restriction is not binding, and dwelling sizes rise throughout the city.
In order to predict the change in Bangalore's spatial size, the magnitudes of these three e®ects
must be quanti¯ed. Unfortunately, this task involves an element of guesswork, although the
numerical results from section 2.3 provide some guidance.
Before delving into the details of this task, it is useful to discuss the available land-use data
for Bangalore, which pertain to 1990 (the appendix explains the origins of the data). The city
is divided into rings, with each comprising a kilometer's worth of radius. Data for each ring
include its total residential population, the average FAR value for its structures, the permitted
FAR value, and the ring's built-up land area. In 1990, Bangalore's population extended out
12
to the twelfth ring, whose outer radius is 12 km. The city's total 1990 population was nearly
3.4 million.
Figure 6 shows FAR values for the 12 rings, with the horizontal scale starting at ring 1.
The dotted curve shows the permitted FAR value, which is rougly constant across rings, and
the solid dark curve shows the actual value. The rough correspondence of the two curves
over their initial ranges suggests that the FAR restriction is binding in rings 1 through 4, and
perhaps in ring 5 as well. The simulation results in Figure 1 predict that FAR will rise over
most of the binding range when the restriction is removed, falling at the edge of this range (as
happens near x = 12 in Figure 1).
While FAR values are thus predicted to increase in rings 1{4, the counterfactual equilibrium
values are, of course, unknown. These values are chosen so that the unrestricted FAR curve
has a plausible appearance, roughly matching the pattern in Figure 1. FAR values in rings 1{4
are set at 4.2, 3.1, 2.3, and 1.6, yielding the smooth unrestricted curve in Figure 6 (the lighter
solid curve). Consistent with the pattern in Figure 1, the FAR curve is shifted downward over
the range where the restriction is not binding, as seen in Figure 6. The downward shift is set
at 7 percent.
Dwelling sizes rise when the FAR restriction is removed, as seen in Figure 3, and the
magnitude of change is theoretically linked to the FAR decline shown in Figure 6.5 In the
simulation of section 2.3, parameter choices led to percentage changes that are almost exactly
equal in magnitude, with FAR falling by about 35 percent over the nonbinding range and
q rising by about 35 percent throughout the city. For simplicity this equality in percentage
changes is preserved in the calculations for Bangalore. Thus, dwelling sizes are assumed to
increase by 7 percent in each ring, matching the 7 percent decline in FAR values over the
nonbinding range. These are changes considerably smaller than those in the simulation, and
the origin of this di®erence is explained below.
Recalling that population density is equal to h(S)=q, with h represented by FAR, the
proportional change in density is given by the proportional change in the FAR/q ratio. This
change can be used to compute the change in ring populations following removal of the FAR
restriction. Assuming that the residential land area in a ring stays constant, the new ring
13
population is found by multiplying the original population by the proportional change in the
FAR/q ratio, which represents the change in density. This proportional change is computed
using the FAR values in Figure 6 along with the assumed 7 percent city-wide increase in q.
Note that the original level of q is not required for this calculation.
This exercise is carried out using data on the existing ring populations for Bangalore,
which are shown by the dark columns in Figure 7. Applying the proportional adjustment from
above yields the new ring populations, which are shown by the lighter columns in the Figure.
Populations in the last few rings in the city involve a further adjustment, which is explained
momentarily.
Ring populations rise near the center of the city, falling farther from the center, and this
pattern is easily understood. The substantial rise in the FAR values in rings 1{4 dominates the
slight rise in q, leading to an increase in FAR/q and thus in density. These density changes,
which mirror the simulation results shown in Figure 5, lead to higher populations in rings 1{4.
In the city's outer rings, the decline in FAR and the rise in q reduce densities, again mirroring
Figure 5, and ring populations fall. However, the population gain near the center dominates
the declines farther out, so that the city's land area shrinks. While the edge resident lives
in ring 12 in the existing city, the edge resident in the restricted city lives in ring 9. Thus,
the edge resident is 3 km closer to the center following removal of the FAR restriction. This
predicted reduction in x provides the key to computing the welfare cost of the FAR restriction,
a task that is carried out in the next section.
A population adjustment is needed in the outer rings, as mentioned above, because the
growth pattern of real-world cities di®ers from the idealized model. Instead of ¯lling in a
uniform circle as population grows, development at the outer edges of cities is \ragged," with
growth proceeding outward along major road arteries but lagging in other areas. The resulting
city looks more like a star than a circle, with the points of the star lying on key transportation
corridors.
This pattern can be seen in Figure 8, which shows the square kilometers of built-up area
contained within each ring. Built-up area increases proportionally with distance through ring
7, re°ecting development of all but a pie slice of the available area. Beyond this distance,
14
however, built-up area falls even though the total available ring area continues to increase. In
e®ect, over this range of distance, development moves outward along the points of the urban
star, which become increasingly narrow as the city's outer limit is approached.
Given this pattern, it would be illegitimate to compress Bangalore's population into the
inner portion of the existing built-up area as the city centralizes. In doing so, the points of the
urban star would e®ectively be truncated, with the population compressed into a circle that
lacks the ragged, star-shaped periphery of real cities.
To preserve the ragged development pattern, the following approach is taken. Once the
new ring populations are computed using the method described above, the city extends out to
ring 8. Since the resulting population is unrealistically compressed, inconsistent with ragged
development at the city's edge, the pattern is adjusted by arbitrarily moving a portion of the
population in the two outer rings (7 and 8) into the vacant ring 9 lying just outside. This
reallocation is carried out so that population smoothly declines across rings 7{9.
As part of this adjustment, built-up areas are appropriately reduced in rings 7 and 8,
which lose population, and built-up area is allocated in the new outer ring 9. As can be seen
in the lighter curve from Figure 8, this adjustment preserves the city's hump-shaped pattern
of built-up areas. Without the adjustment, built-up areas would follow the dark curve, which
would be truncated near its peak, thus lacking the realistic downward-sloping range indicative
of ragged development at the city's edge.
While a®ected by this adjustment, the population pattern in the unrestricted city is ob-
viously also sensitive to the assumed changes in FAR and dwelling sizes, as described above.
The magnitudes of these changes were chosen to produce an unrestricted city that broadly
matches the predictions of the simulation exercise of section 2.3.
To understand the choice process, observe that in the simulated city, the FAR restriction
is binding over 24 percent of its land area.6 Based on the data shown in Figure 8, Bangalore's
restriction is binding over nearly the same fraction of its built-up area, 23 percent (the share
of rings 1{4). As a result, the impact of removing the FAR restriction, as measured by the
reduction in the city's built-up area, should be similar between Bangalore and the simulated
city. For the simulated city, this percentage reduction equals 17 percent,7 and under the
15
maintained assumptions, Bangalore's built-up area falls by exactly the same percentage (the
area falls from 191 to 159 square kilometers).
Thus, the maintained assumptions, which include the speci¯ed FAR increases in rings 1{4,
the 7 percent decline over the nonbinding range, and the 7 percent increase in dwelling size,
generate an outcome that matches key aspects of the simulation. These percentage changes are
much smaller than the 35 percent values from the simulation (see above), but using a similarly
large percentage produces an implausible result, with the city growing spatially rather than
shrinking when the FAR restriction is removed.
3.2. Computing the welfare cost of the FAR restriction
Figure 7 shows that, as a result of the city's spatial shrinkage following removal of the
FAR restriction, the edge resident moves 3 km closer to the CBD. However, with Figure 7 also
showing only a handful of residents in ring 12, it may instead be proper to view the distance
decline for the edge resident as only 2 km. Welfare cost, which equals the resulting saving in
the edge resident's commuting cost, is computed for both distance values.
While the 3 km distance reduction applies to the 1990 city, it is easier to estimate the
resulting reduction in commuting cost using data from nearer the year 2000, which are more
readily available. The magnitude of the commuting-cost saving is ultimately judged, however,
by expressing it as a percentage of income. Under the assumption that incomes and commuting
costs in Bangalore have grown in step with one another since 1990, this percentage value can
be then used to measure the welfare cost for the 1990 city.
The key requirement for the welfare-cost calculations is an estimate of the commuting-cost
parameter t based on Indian data. Commuting cost has two components, money cost and time
cost, and as explained by Calfee and Winston (1998), traditional studies have assumed that
commuters value the time spent in commuting at approximately 60 percent of the wage rate.
Using a 1999 Indian wage estimate of 12.7 Rs. per hour, the implied time cost of commuting
is then 7.6 Rs. per hour.8 Converting this ¯gure into a cost per kilometer requires an estimate
of tra±c speed. Urban roadways in India are highly congested, and a common speed estimate
is 20 to 30 km per hour. Using the lower value, the time cost of commuting is then 7.6/20 =
.38 Rs. per km.
16
The money cost of commuting depends on the transport mode chosen. Because estimates
of operating costs for private vehicles are not readily available for India, a money cost estimate
for bus commuters is used instead. Since money cost for this mode is presumably cheaper than
for any type of private vehicle, the estimate serves as lower bound on the average money cost
of commuting, thus biasing the welfare-cost computation in a conservative direction.
The estimate makes use of information provided by Zhi Liu of the World Bank, based
on personal contacts with o±cials at the Bangalore Metropolitan Transit Corporation. The
information shows that Bangalore bus fares are distance-based, and that the average cost per
km traveled is 0.40 Rs. Adding this ¯gure to the above time cost estimate yields an overall
commuting cost of 0.78 Rs. per km.
This number must be multiplied by 2 to put it on a round-trip basis and multiplied again by
300 work days per year to convert it to an annual basis.9 These calculations yield a commuting
cost of 468 Rs. per km per year, using late-1990 prices.
If commuting distance for the edge resident falls by 3 km, as suggested by Figure 7, then
the reduction in commuting cost equals 1404 Rs. per year. If the smaller decline of 2 km
is relevant, then the commuting-cost reduction is 936 Rs. per year. The magnitude of these
savings can be judged by comparing them to per capita income for Bangalore in 1999, which
equaled approximately 28,300 Rs.10 The commuting-cost savings range from 3.3 to 5.0 percent
of per capita income, representing a signi¯cant share of individual resources.
While per capita income provides a convenient benchmark, its use may overstate the im-
portance of the commuting-cost savings on a household basis given that not all members are
wage earners. Recognizing this possibility, an alternative way of gauging the magnitude of
these savings is to compare them to total household consumption expenditure, which is mea-
sured via survey methods. The NSS Consumer Expenditure Survey for 1999-2000 documents
an average household consumption for urban India of 3867 Rs. per month, or 46,400 Rs. per
year. If a household contains two wage earners, with each experiencing the above savings in
commuting cost, then the combined savings range between 1872 and 2802 Rs., representing
between 4.0 and 6.0 percent of household consumption. If the average number of wage earners
is instead 1.5, then savings range between 1404 and 2106 Rs., representing between 3.0 and
17
4.5 percent of household consumption.
These percentage values have roughly the same order of magnitude as those based on the
per capita approach, contrary to expectations. The reason is that household consumption
¯gure of 46,400 Rs. is only 64 percent larger than the per capita income value of 28,300
Rs. even though the average Indian household contains approximately 5 people.11 According
to Salman Zaidi of the World Bank, this disrepancy re°ects a growing divergence between
measures of Indian household purchasing power based, alternatively, on survey data and the
national income accounts. However, since the survey data may provide a more realistic picture
of household circumstances, the above savings percentages, which lie in the 3{6 percent range
of household consumption, may be credible.
As noted above, this percentage range is derived using an estimate of t based on late-1990's
data, not on data for the 1990 city. However, if commuting costs and incomes grew by the
roughly the same proportion over the period since 1990, then use of 1990 data would have
yielded similar percentage values. As a result, the 3{6 percent range for welfare cost as a
share of housing consumption expenditure is relevant for 1990. Finally, note that since these
percentages represent the gains from removal of the FAR restriction, they capture the welfare
cost of its presence.
A welfare cost of 3{6 of household consumption is substantial in size, being larger in magni-
tude than the measured welfare cost of some key distortions in Western economies.12 Moreover,
in a country like India, where vast numbers of people live on the edge of impoverishment, this
welfare loss may represent the di®erence between poverty and non-poverty status for many
households.
4. Conclusion
This paper has analyzed the impacts and the welfare cost of building-height restrictions,
providing a concrete welfare-cost estimate for the city of Bangalore. Relying on several theo-
retical results, the analysis shows that the welfare cost imposed on its residents by Bangalore's
FAR restriction ranges between 3 and 6 percent of household consumption. This burden rep-
resents a signi¯cant share of individual resources, and its presence may push many marginal
18
households into poverty.
The paper has carried out a counterfactual exercise, asking what Bangalore would look
like today had it developed in the absence of an FAR restriction. Policymakers, however,
may be concerned with a more practical question: conditional on Bangalore's history, how
would the city's future development be a®ected if the FAR restriction were removed today?
Recognizing that Bangalore's population will continue to grow as land-use adjusts to a removal
of the restriction, an answer might be provided as follows. First, instead of growing at the
boundary, the city would accommodate new population growth over an initial period through
redevelopment of its central area at higher densities. Once this central redevelopment process
was completed, further population growth would then occur at the city's edge. Because of
its higher central densities, Bangalore at each future point in time would be more spatially
compact, and housing prices would be lower, than if the FAR restriction had remained in place.
As a result, consumer welfare would be higher at each point in time than in the presence of
the restriction.
As for infrastructure investment, removal of the FAR restriction would require increased
spending in the city's central areas, as explained in the introduction. However, with the city
more compact at each point in time, the need for spatial expansion of its infrastructure network
would be reduced, producing an o®setting reduction in costs.
Overall, the future gains from removal of the FAR restriction thus mirror in a qualita-
tive sense the bene¯ts documented in the counterfactual exercise carried out in the paper.
Quantifying these gains, however, would be di±cult given uncertainty about the city's future
population path and other aspects of the future economic environment.
Finally, several extensions of the theoretical analysis in Section 2 might prove illuminating.
The ¯rst would eliminate absentee land ownership, assuming instead that urban residents own
equal shares of the region's land area. In this case, changes in per capita rental income
would enter the welfare-cost calculation along with the factors identi¯ed above. A second
extension would introduce tra±c congestion, allowing commuting costs to rise with tra±c
°ows. By leading to ine±cient spatial expansion of a city, unpriced tra±c congestion ampli¯es
the tendency already generated by an FAR restriction (see, for example, Wheaton (1998)). As
19
a result, one might expect the restriction to generate a higher welfare cost in a congested city.
A ¯nal extension would analyze the e®ect of an FAR restriction in a city where the location
of employment is endogenous, allowing the emergence of subcenters. If an FAR restriction
were added to Lucas and Rossi-Hansberg's (2002) variant of the Fujita-Ogawa (1982) model,
which allows variable densities, then the equilibria with dispersed rather than concentrated
employment would presumably be more likely. Because of their complexity, the latter two
extensions would probably require the use of numerical methods.
20
Appendix
A.1. Simulation assumptions
The Cobb-Douglas utility function is written v(c; q) = c1¡®q®, and ® is set equal to
0.1, yielding a relatively small weight on housing consumption. Maximizing v subject to the
budget constraint and substituting the resulting c and q demand functions into the condition
v(c; q) = u yields a solution for p, which is written p(x; u) = A(y ¡ tx)1=®u¡1=®, where A
is a constant involving ®. Substituting the p(x; u) into the demand function for q yields
q(x; u) = B(y ¡ tx)(®¡1)=®u1=®, where B is a constant involving ®.
The housing production function is also Cobb-Douglas, yielding an intensive form given
by h(S) = gS¯ , with ¯ = 0:6 and g = 0:0005. The latter coe±cient is adjusted to generate
realistic FAR values and population densities, although it has no e®ect on the values of x
and u. Solving the ¯rst order condition ph0(S) = 1 for S and substituting p(x;u) yields
S(x;u) = C(y¡tx)1=®(1¡¯)u¡1=®(1¡¯), where C is a constant involving ®, ¯ and g. Substituting
this solution along with p(x; u) into the zero-pro¯t condition then yields r(x; u) = D(y ¡tx)1=®(1¡¯)u¡1=®(1¡¯), where D is a constant that depends on ®, ¯ and g. These functions
are then substituted into the equilibrium conditions (4){(5) and (7){(9), which are solved
numerically using Mathematica.
As mentioned in the text, the parameter assumptions underlying the solutions include
N = 800; 000, y = $42; 151, and µ = 4. The estimate of ra is based on the average U.S.
agricultural land value for the year 2000, which equals $1,210 per acre. Assuming a 5 percent
discount rate, this value yields a rent per acre of $60.50. This ¯gure in turn implies a rent per
square mile of $38,720, which is the ra value used in the simulations. To derive the time cost
of commuting, the $42,151 household income is used to compute an hourly wage of $16.86,
assuming 2000 work hours per year per worker and 1.25 workers per household. Then, assuming
that commute time is valued at 60 percent of the wage, and that rush hour tra±c moves at
30 miles per hour, the implied value of commuting time is $0.34 per mile per worker. Adding
an operating cost of $0.36 per mile (the current Federal allowance), total commuting cost per
21
mile is then $0.70. Multiplying by 1.25 workers per household, by 250 work days per year,
and again by 2 to convert to a round-trip basis, commuting cost per mile for a household on
a yearly basis is $437.50 per year, which is rounded up to yield a t value of $450.
A.2. Proof of Proposition 2
To establish Proposition 2, let the indirect utility function corresponding to v(c; q) be
given by ev(y ¡ tx; p). Then, for the edge residents with and without the FAR restriction,
ev(y¡tx1; p) = u1 and ev(y¡ tx0; p) = u0 hold. Moreover, the compensation Z required to o®set
the e®ect of the FAR restriction for the edge resident, which must satisfy ev(y¡tx1+Z; p) = u0,
is given by Z = t(x1 ¡ x0). To show that the same Z is appropriate for interior residents,
replace x1 with x in the last utility condition, and totally di®erentiate it with respect to x.
This computation yields evy(¡t + Zx) + evppx = 0, or Zx = ¡px(evp=evy) + t. However, since
evp=evy = ¡q holds given the properties of the indirect utility function, this last expression
reduces to q(px + t=q). But using the well-known formula for slope of the housing price
function, which is written px = ¡t=q, this last expression equals zero. Therefore, Zx = 0
holds, implying that the compensation required to o®set the e®ect of the FAR restriction is
spatially invariant and thus equal to t(x1 ¡ x0) for all residents.
A.3. Data description
The existing land use for Bangalore was disaggregated into successive rings centered on
the CBD at 1 km intervals. The data were extracted from a GIS database containing census
populations by subdistrict, a land use map showing the built-up area, and a regulatory map
showing the permitted FAR values in di®erent parts of the city. An estimate of housing °oor
space per person was used to compute actual FAR values, as follows. First, the estimate was
generated by assuming that °oor space follows an increasing exponential function, with values
of 7 square meters at the CBD and 13.4 square meters at the edge of the city. Multiplying °oor
space per person by the ring population then yields total ring °oor space. Finally, dividing
this quantity by net residential land in the ring yields the ring's FAR value. Net residential
land is computed by taking an appropriate share of the ring's total built up area.
22
Figure 1: Simulated FAR patterns
0
5
10
15
0 4 8 12 16 20 24
unrestricted FARrestricted FAR
Figure 2: Simulated housing price patterns
0
2
4
6
8
10
12
0 4 8 12 16 20 24
unrestricted prestricted p
Figure 3: Simulated dwelling size patterns
0
1000
2000
3000
4000
5000
6000
0 4 8 12 16 20 24
unrestricted qrestricted q
Figure 4: Simulated land rent patterns
0
10,000,000
20,000,000
0 4 8 12 16 20 24
unrestricted rrestricted r
Figure 5: Simulated population (dwelling) density patterns
0
5,000
10,000
0 4 8 12 16 20 24
unrestricted densityrestricted density
Figure 6: Bangalore FAR values
0
1
2
3
4
1 2 3 4 5 6 7 8 9 10 11 12
unrestricted FARrestricted FARpermitted FAR
Figure 7: Bangalore population patterns
0
200,000
400,000
600,000
800,000
1 2 3 4 5 6 7 8 9 10 11 12
unrestricted population patternrestricted population pattern
Figure 8: Built-up area
0
10
20
30
0 1 2 3 4 5 6 7 8 9 10 11 12
unrestricted built-up arearestricted built-up area
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24
Footnotes
¤This paper was commissioned by the World Bank, but its contents re°ect the opinions ofthe authors. We thank Richard Arnott and Robert Buckley for helpful comments. Anyshortcomings in the paper, however, are our responsibility.
1Otherwise, h=q must be multiplied by persons per dwelling to generate population density. Ifthis value is constant throughout the city, then the only e®ect of this change is to introducea multiplicative factor into (5).
2With utility higher in this case, density now must be lower outside bx in the restricted citythan in the unrestricted city (recall Su < 0 and qu > 0). In addition, density is againlower in the restricted city inside of bx. This conclusion follows because u1 > u0 impliesthat h(S(bx; u0))=q(bx;u0) > h(S(bx; u1))=q(bx; u1) = bh holds in the unrestricted city. Sinceh(S(x; u0))=q(x;u0) exceeds h(S(bx; u0))=q(bx; u0) for x < bx, h(S(x;u0))=q(x; u0) > bh mustthen hold over this range. Thus, the restricted city is everywhere less dense, and since it isassumed to be smaller spatially than the unrestricted city, it again cannot accommodate itspopulation.
3Arnott and MacKinnon (1977) present a diagram similar to Figure 1.
4To establish this fact, let the values of p and structural density S at x be denoted p andS. Then note that these values are determined by two conditions: the ¯rst-order conditionph0(S) = 1 and the zero-pro¯t condition ph0(S)¡S¡ra = 0. Since x itself does not explicitlyenter these equations, p does not depend on its magnitude.
5Using the solutions from the appendix, FAR falls by the proportion (u0=u1)¡¯=(®(1¡¯)) andq rises by the proportion (u0=u1)1=®.
6This percentage is given by bx2=x21 = 11:72=23:52 = :24
7This percent is given by x20=x
21 = 21:42=23:52 = :83.
8This estimate makes use of a wage-estimation methodology developed by the U.S. Gov-ernment Import Administration and documented at <http://ia.ita.doc.gov/wages>. Themethodology uses wage and per capita GNP data for a cross section of 56 countries to com-pute the following regression: Wage = 0.462 + .000432*(per capita GNP). Using the percapita income estimate of 28,300 Rs. for Bangalore (see footnote 10), this regression predictsa wage of approximately 12.7 Rs.
25
9The assumption of 300 work days per year can be justi¯ed by assuming 50 work weeks peryear and 6 work days per week.
10The Bangalore Directorate of Economics and Statistics provides per capita income ¯guresfor the city, with the 1998-1999 value equal to approximately 28,300 Rs. (as quoted on thewebsite <http://www/bangaloreit.com/html/aboutbng/bangpro l̄e.htm> operated by theKarnataka state government).
11Asian Demographics Ltd. <http://www.asiandemographics.com/DI231102.htm> provides ahousehold-size estimate of 5.07 persons.
12For example, Boadway and Wildasin (1984, p. 391) cite empirical estimates showing that thedeadweight loss from capital income taxation in the U.S. ranges between 2 and 12 percent oftax revenue. Expressed as a share of the economy's overall income, the relevant percentageswould be much smaller.
26